TY - JOUR
T1 - Proposing a new loan recommendation framework for loan allocation strategies in online P2P lending
AU - Rong, Yuting
AU - Liu, Shan
AU - Yan, Shuo
AU - Huang, Wei Wayne
AU - Chen, Yanxia
N1 - Publisher Copyright:
© 2022, Emerald Publishing Limited.
PY - 2023/3/9
Y1 - 2023/3/9
N2 - Purpose: Lenders in online peer-to-peer (P2P) lending platforms are always non-experts and face severe information asymmetry. This paper aims to achieve the goals of gaining high returns with risk limitations or lowering risks with expected returns for P2P lenders. Design/methodology/approach: This paper used data from a leading online P2P lending platform in America. First, the authors constructed a logistic regression-based credit scoring model and a linear regression-based profit scoring model to predict the default probabilities and profitability of loans. Second, based on the predictions of loan risk and loan return, the authors constructed linear programming model to form the optimal loan portfolio for lenders. Findings: The research results show that compared to a logistic regression-based credit scoring method, the proposed new framework could make more returns for lenders with risks unchanged. Furthermore, compared to a linear regression-based profit scoring method, the proposed new framework could lower risks for lenders without lowering returns. In addition, comparisons with advanced machine learning techniques further validate its superiority. Originality/value: Unlike previous studies that focus solely on predicting the default probability or profitability of loans, this study considers loan allocation in online P2P lending as an optimization research problem using a new framework based upon modern portfolio theory (MPT). This study may contribute theoretically to the extension of MPT in the specific context of online P2P lending and benefit lenders and platforms to develop more efficient investment tools.
AB - Purpose: Lenders in online peer-to-peer (P2P) lending platforms are always non-experts and face severe information asymmetry. This paper aims to achieve the goals of gaining high returns with risk limitations or lowering risks with expected returns for P2P lenders. Design/methodology/approach: This paper used data from a leading online P2P lending platform in America. First, the authors constructed a logistic regression-based credit scoring model and a linear regression-based profit scoring model to predict the default probabilities and profitability of loans. Second, based on the predictions of loan risk and loan return, the authors constructed linear programming model to form the optimal loan portfolio for lenders. Findings: The research results show that compared to a logistic regression-based credit scoring method, the proposed new framework could make more returns for lenders with risks unchanged. Furthermore, compared to a linear regression-based profit scoring method, the proposed new framework could lower risks for lenders without lowering returns. In addition, comparisons with advanced machine learning techniques further validate its superiority. Originality/value: Unlike previous studies that focus solely on predicting the default probability or profitability of loans, this study considers loan allocation in online P2P lending as an optimization research problem using a new framework based upon modern portfolio theory (MPT). This study may contribute theoretically to the extension of MPT in the specific context of online P2P lending and benefit lenders and platforms to develop more efficient investment tools.
KW - Loan allocation strategies
KW - Modern portfolio theory
KW - Online peer-to-peer lending
UR - https://www.scopus.com/pages/publications/85147103876
U2 - 10.1108/IMDS-07-2022-0399
DO - 10.1108/IMDS-07-2022-0399
M3 - 文章
AN - SCOPUS:85147103876
SN - 0263-5577
VL - 123
SP - 910
EP - 930
JO - Industrial Management and Data Systems
JF - Industrial Management and Data Systems
IS - 3
ER -